SmartStim:人工智能支持的深层脑刺激设备

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Dean M. Corva;Brenna Parke;Alyssa West;Egan H. Doeven;Scott D. Adams;Susannah J. Tye;Parastoo Hashemi;Michael Berk;Abbas Z. Kouzani
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引用次数: 0

摘要

深部脑刺激(DBS)在治疗神经和精神疾病方面已被证明具有疗效。目前,DBS 设备采用 "开环 "配置,需要手动调整电刺激以满足患者需求。因此,目前正在开发闭环 DBS,根据内部信号监测按需提供适当的治疗。目前研究的一个主要挑战是解释测量信号和提供适当干预的复杂性,目前还没有微型闭环 DBS 设备具有板载人工智能(AI)来满足这一需求。本文介绍了一种名为 SmartStim 的新型微型设备,它利用人工智能监测动态变化的大脑生物标志物。此外,人工智能还能决定是否需要输出刺激器进行治疗。该设备由两个关键部分组成:硬件模块(神经传感器单元、处理器和神经刺激器)和软件模块(数据处理、人工智能和固件)。神经传感器单元由两个子组件组成。第一个是可进行阻抗分析的恒电位仪,第二个是专用的快速扫描循环伏安法(FSCV)前端,扫描速率可达 1000 V/s。该设备可输出电流控制的刺激波形,频率范围为 5 Hz - 200 Hz,电流范围为 1~\mu \text{A}$ 至 10 mA,并具有主动电荷平衡功能。我们进行了五项实验来验证 SmartStim:静态电阻负载测试、模拟脑电阻测试、静态电化学电池测试、阻抗测试和动态血清素测试。这些实验证实了 SmartStim 利用人工智能识别小鼠大脑神经化学模式的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SmartStim: An Artificial Intelligence Enabled Deep Brain Stimulation Device
Deep brain stimulation (DBS) has demonstrated therapeutic efficacy in the treatment of neurological and psychiatric disorders. Currently, DBS devices employ an ‘open-loop’ configuration, requiring manual adjustment of electrical stimulation to address patient needs. For this reason, closed-loop DBS is being developed, delivering appropriate treatment on-demand based on internal signal monitoring. A key challenge in current research is the complexity of interpreting the measured signals and delivering appropriate interventions, currently no miniaturised closed-loop DBS device has on-board artificial intelligence (AI) to meet this need. This paper presents a new miniaturised device, named SmartStim, that uses AI to monitor dynamically changing brain biomarkers. In addition, the AI decides if the output stimulator is required for treatment. This device has two key components: the hardware module (neural sensor unit, processor, and neurostimulator) and a software module (data processing, AI, and firmware). The neural sensor unit is comprised of two subcomponents. The first is a potentiostat that can perform impedance analysis, and the second is a dedicated fast scan cyclic voltammetry (FSCV) front-end that can perform scan rates up to 1000 V/s. This device can output current-controlled stimulation waveforms in a frequency range of 5 Hz – 200 Hz, a current range of $1~\mu \text{A}$ to 10 mA, with active charge balancing. Five experiments were conducted to validate SmartStim: static resistive load test, emulated brain resistance test, static electrochemical cell test, impedance test, and dynamic serotonin test. These experiments confirm the potential for SmartStim to identify neurochemical patterns in a mouse brain using AI.
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CiteScore
6.80
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